Development of an in silico consensus model for the prediction of the phospholipigenic potential of small molecules

IF 3.1 Q2 TOXICOLOGY
Sebastian Schieferdecker, Andreas Eberlein, Esther Vock, Mario Beilmann
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引用次数: 1

Abstract

Phospholipidosis (PL) describes the accumulation of phospholipids in lysosomes of cells of various tissues after prolonged exposure with drug like compounds. These cellular findings can result in a delay of drug development, cause increased costs in affected projects and potentially may halt a drug development program. The early detection of compounds which potentially cause phospholipidosis therefore is desirable for risk mitigation. Here we describe an in silico consensus model for the detection of phospholipigenic potential of small molecules. The model was trained on in house in vitro data yielding an accuracy of 94%. By employing model agnostic explainability methods, we could show that the model learns reasonable molecular properties. The consensus model showed good performance on underrepresented PL-active compounds in clusters of similar molecules of the test dataset and on external in vitro and in vivo validation data of highly structural dissimilarity to the training data. Using the external in vitro data, an applicability domain of the model was deduced.

一种预测小分子磷脂生成潜能的硅共识模型的发展
磷脂沉着症(PL)描述了长时间暴露于类药物化合物后,各种组织细胞溶酶体中磷脂的积累。这些细胞发现可能会导致药物开发的延迟,导致受影响项目的成本增加,并可能导致药物开发计划的中断。因此,早期发现可能导致磷脂病的化合物对于降低风险是可取的。在这里,我们描述了一个硅共识模型,用于检测小分子的磷脂生成潜力。该模型是在室内体外数据上训练的,准确度为94%。通过采用与模型无关的可解释性方法,我们可以证明模型学习了合理的分子性质。共识模型在测试数据集中相似分子簇中代表性不足的pl活性化合物以及与训练数据结构高度不同的外部体外和体内验证数据上表现良好。利用体外实验数据,推导出模型的适用范围。
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来源期刊
Computational Toxicology
Computational Toxicology Computer Science-Computer Science Applications
CiteScore
5.50
自引率
0.00%
发文量
53
审稿时长
56 days
期刊介绍: Computational Toxicology is an international journal publishing computational approaches that assist in the toxicological evaluation of new and existing chemical substances assisting in their safety assessment. -All effects relating to human health and environmental toxicity and fate -Prediction of toxicity, metabolism, fate and physico-chemical properties -The development of models from read-across, (Q)SARs, PBPK, QIVIVE, Multi-Scale Models -Big Data in toxicology: integration, management, analysis -Implementation of models through AOPs, IATA, TTC -Regulatory acceptance of models: evaluation, verification and validation -From metals, to small organic molecules to nanoparticles -Pharmaceuticals, pesticides, foods, cosmetics, fine chemicals -Bringing together the views of industry, regulators, academia, NGOs
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